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testgroup
pytensor
Commits
7ef44dfd
提交
7ef44dfd
authored
10月 22, 2015
作者:
Frederic Bastien
浏览文件
操作
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电子邮件补丁
差异文件
Move nfunc_spec to Scalar op, This allow to always have it even when we use Elemwise(a_scalar_op).
This happend frequently in the grad computation of elemwise. This could speed up DebugMode. This fix tests crashX
上级
ed337d4e
隐藏空白字符变更
内嵌
并排
正在显示
3 个修改的文件
包含
153 行增加
和
60 行删除
+153
-60
basic.py
theano/scalar/basic.py
+95
-0
basic.py
theano/tensor/basic.py
+56
-60
elemwise.py
theano/tensor/elemwise.py
+2
-0
没有找到文件。
theano/scalar/basic.py
浏览文件 @
7ef44dfd
...
...
@@ -1031,6 +1031,7 @@ class LT(LogicalComparison):
identity
=
False
commutative
=
False
associative
=
False
nfunc_spec
=
(
'less'
,
2
,
1
)
def
impl
(
self
,
x
,
y
):
# built-in < don't support complex
...
...
@@ -1049,6 +1050,7 @@ class GT(LogicalComparison):
identity
=
False
commutative
=
False
associative
=
False
nfunc_spec
=
(
'greater'
,
2
,
1
)
def
impl
(
self
,
x
,
y
):
# built-in > don't support complex
...
...
@@ -1067,6 +1069,7 @@ class LE(LogicalComparison):
identity
=
False
commutative
=
False
associative
=
False
nfunc_spec
=
(
'less_equal'
,
2
,
1
)
def
impl
(
self
,
x
,
y
):
# built-in <= don't support complex
...
...
@@ -1085,6 +1088,7 @@ class GE(LogicalComparison):
identity
=
False
commutative
=
False
associative
=
False
nfunc_spec
=
(
'greater_equal'
,
2
,
1
)
def
impl
(
self
,
x
,
y
):
# built-in >= don't support complex
...
...
@@ -1103,6 +1107,7 @@ class EQ(LogicalComparison):
identity
=
False
commutative
=
True
associative
=
False
nfunc_spec
=
(
'equal'
,
2
,
1
)
def
impl
(
self
,
x
,
y
):
return
x
==
y
...
...
@@ -1118,6 +1123,7 @@ class NEQ(LogicalComparison):
identity
=
False
commutative
=
True
associative
=
False
nfunc_spec
=
(
'not_equal'
,
2
,
1
)
def
impl
(
self
,
x
,
y
):
return
x
!=
y
...
...
@@ -1132,6 +1138,8 @@ neq = NEQ()
class
IsNan
(
FixedLogicalComparison
):
nfunc_spec
=
(
'isnan'
,
1
,
1
)
def
impl
(
self
,
x
):
return
numpy
.
isnan
(
x
)
...
...
@@ -1145,6 +1153,8 @@ isnan = IsNan()
class
IsInf
(
FixedLogicalComparison
):
nfunc_spec
=
(
'isinf'
,
1
,
1
)
def
impl
(
self
,
x
):
return
numpy
.
isinf
(
x
)
...
...
@@ -1223,6 +1233,7 @@ inclosedrange = InRange(False, False)
class
Switch
(
ScalarOp
):
nin
=
3
nfunc_spec
=
(
'where'
,
3
,
1
)
def
impl
(
self
,
cond
,
ift
,
iff
):
if
cond
:
...
...
@@ -1296,6 +1307,7 @@ class OR(BinaryBitOp):
identity
=
0
commutative
=
True
associative
=
True
nfunc_spec
=
(
'bitwise_or'
,
2
,
1
)
def
impl
(
self
,
x
,
y
):
return
x
|
y
...
...
@@ -1311,6 +1323,7 @@ class XOR(BinaryBitOp):
identity
=
0
commutative
=
True
associative
=
True
nfunc_spec
=
(
'bitwise_xor'
,
2
,
1
)
def
impl
(
self
,
x
,
y
):
return
x
^
y
...
...
@@ -1326,6 +1339,7 @@ class AND(BinaryBitOp):
identity
=
1
commutative
=
True
associative
=
True
nfunc_spec
=
(
'bitwise_and'
,
2
,
1
)
def
impl
(
self
,
x
,
y
):
return
x
&
y
...
...
@@ -1338,6 +1352,8 @@ and_ = AND()
class
Invert
(
UnaryBitOp
):
nfunc_spec
=
(
'invert'
,
1
,
1
)
def
impl
(
self
,
x
):
return
~
x
...
...
@@ -1354,6 +1370,7 @@ invert = Invert()
class
Maximum
(
BinaryScalarOp
):
commutative
=
True
associative
=
True
nfunc_spec
=
(
'maximum'
,
2
,
1
)
def
impl
(
self
,
*
inputs
):
# The built-in max function don't support complex type
...
...
@@ -1392,6 +1409,7 @@ maximum = Maximum(upcast_out, name='maximum')
class
Minimum
(
BinaryScalarOp
):
commutative
=
True
associative
=
True
nfunc_spec
=
(
'minimum'
,
2
,
1
)
def
impl
(
self
,
*
inputs
):
# The built-in min function don't support complex type
...
...
@@ -1427,6 +1445,7 @@ class Add(ScalarOp):
identity
=
0
commutative
=
True
associative
=
True
nfunc_spec
=
(
'add'
,
2
,
1
)
def
impl
(
self
,
*
inputs
):
return
sum
(
inputs
)
...
...
@@ -1465,6 +1484,7 @@ class Mul(ScalarOp):
identity
=
1
commutative
=
True
associative
=
True
nfunc_spec
=
(
'multiply'
,
2
,
1
)
def
impl
(
self
,
*
inputs
):
return
numpy
.
product
(
inputs
)
...
...
@@ -1516,6 +1536,8 @@ mul = Mul(upcast_out, name='mul')
class
Sub
(
BinaryScalarOp
):
nfunc_spec
=
(
'subtract'
,
2
,
1
)
def
impl
(
self
,
x
,
y
):
return
x
-
y
...
...
@@ -1604,6 +1626,8 @@ def div_proxy(x, y):
class
TrueDiv
(
BinaryScalarOp
):
nfunc_spec
=
(
'true_divide'
,
2
,
1
)
def
output_types
(
self
,
types
):
if
all
(
t
in
discrete_types
for
t
in
types
):
return
[
get_scalar_type
(
config
.
floatX
)]
...
...
@@ -1659,6 +1683,7 @@ true_div = TrueDiv(upcast_out, name='true_div')
class
IntDiv
(
BinaryScalarOp
):
nfunc_spec
=
(
'floor_divide'
,
2
,
1
)
complex_error
=
ComplexError
(
"Theano does not support integer division (//) on "
"complex numbers, since numpy deprecated it."
)
...
...
@@ -1744,6 +1769,7 @@ def mod_check(x, y):
class
Mod
(
BinaryScalarOp
):
nfunc_spec
=
(
'mod'
,
2
,
1
)
complex_error
=
ComplexError
(
"Theano does not support the mod operator (
%
) on "
"complex numbers, since numpy deprecated it."
)
...
...
@@ -1828,6 +1854,8 @@ mod = Mod(upcast_out, name='mod')
class
Pow
(
BinaryScalarOp
):
nfunc_spec
=
(
'power'
,
2
,
1
)
def
impl
(
self
,
x
,
y
):
return
x
**
y
...
...
@@ -1903,6 +1931,8 @@ pow = Pow(upcast_out, name='pow')
class
Clip
(
ScalarOp
):
nin
=
3
# The numpy.clip don't work correctly when the min is bigger then the max,
# So we do not use nfunc_spec = ('clip', 3, 1)
def
impl
(
self
,
x
,
min
,
max
):
if
x
<
min
:
...
...
@@ -2086,6 +2116,8 @@ def cast(x, dtype):
class
Abs
(
UnaryScalarOp
):
nfunc_spec
=
(
'abs'
,
1
,
1
)
def
make_node
(
self
,
x
):
inputs
=
[
as_scalar
(
input
)
for
input
in
[
x
]]
if
inputs
[
0
]
.
type
==
complex64
:
...
...
@@ -2126,6 +2158,8 @@ abs_ = Abs(same_out)
class
Sgn
(
UnaryScalarOp
):
nfunc_spec
=
(
'sign'
,
1
,
1
)
def
impl
(
self
,
x
):
# casting to output type is handled by filter
return
numpy
.
sign
(
x
)
...
...
@@ -2162,6 +2196,8 @@ sgn = Sgn(same_out_nocomplex, name='sgn')
class
Ceil
(
UnaryScalarOp
):
nfunc_spec
=
(
'ceil'
,
1
,
1
)
def
impl
(
self
,
x
):
return
numpy
.
ceil
(
x
)
...
...
@@ -2183,6 +2219,8 @@ ceil = Ceil(same_out_nocomplex, name='ceil')
class
Floor
(
UnaryScalarOp
):
nfunc_spec
=
(
'floor'
,
1
,
1
)
def
impl
(
self
,
x
):
return
numpy
.
floor
(
x
)
...
...
@@ -2204,6 +2242,8 @@ floor = Floor(same_out_nocomplex, name='floor')
class
Trunc
(
UnaryScalarOp
):
nfunc_spec
=
(
'trunc'
,
1
,
1
)
def
impl
(
self
,
x
):
return
numpy
.
trunc
(
x
)
...
...
@@ -2227,6 +2267,8 @@ class RoundHalfToEven(UnaryScalarOp):
See http://en.wikipedia.org/wiki/Rounding for more details.
"""
nfunc_spec
=
(
'around'
,
1
,
1
)
def
impl
(
self
,
x
):
return
numpy
.
round
(
x
)
...
...
@@ -2348,6 +2390,8 @@ round_half_away_from_zero = RoundHalfAwayFromZero(same_out_float_only)
class
Neg
(
UnaryScalarOp
):
nfunc_spec
=
(
'negative'
,
1
,
1
)
def
impl
(
self
,
x
):
return
-
x
...
...
@@ -2413,6 +2457,7 @@ class Log(UnaryScalarOp):
log base e.
"""
nfunc_spec
=
(
'log'
,
1
,
1
)
amd_float32
=
"amd_vrsa_logf"
amd_float64
=
"amd_vrda_log"
...
...
@@ -2454,6 +2499,7 @@ class Log2(UnaryScalarOp):
log base 2.
"""
nfunc_spec
=
(
'log2'
,
1
,
1
)
amd_float32
=
"amd_vrsa_log2f"
amd_float64
=
"amd_vrda_log2"
...
...
@@ -2492,6 +2538,7 @@ class Log10(UnaryScalarOp):
log base 10.
"""
nfunc_spec
=
(
'log10'
,
1
,
1
)
amd_float32
=
"amd_vrsa_log10f"
amd_float64
=
"amd_vrda_log10"
...
...
@@ -2530,6 +2577,8 @@ class Log1p(UnaryScalarOp):
log(1+x).
"""
nfunc_spec
=
(
'log1p'
,
1
,
1
)
def
impl
(
self
,
x
):
# If x is an int8 or uint8, numpy.log1p will compute the result in
# half-precision (float16), where we want float32.
...
...
@@ -2561,6 +2610,7 @@ log1p = Log1p(upgrade_to_float, name='log1p')
class
Exp
(
UnaryScalarOp
):
nfunc_spec
=
(
'exp'
,
1
,
1
)
amd_float32
=
"amd_vrsa_expf"
amd_float64
=
"amd_vrda_exp"
...
...
@@ -2595,6 +2645,8 @@ exp = Exp(upgrade_to_float, name='exp')
class
Exp2
(
UnaryScalarOp
):
nfunc_spec
=
(
'exp2'
,
1
,
1
)
def
impl
(
self
,
x
):
# If x is an int8 or uint8, numpy.exp2 will compute the result in
# half-precision (float16), where we want float32.
...
...
@@ -2626,6 +2678,8 @@ exp2 = Exp2(upgrade_to_float, name='exp2')
class
Expm1
(
UnaryScalarOp
):
nfunc_spec
=
(
'expm1'
,
1
,
1
)
def
impl
(
self
,
x
):
# If x is an int8 or uint8, numpy.expm1 will compute the result in
# half-precision (float16), where we want float32.
...
...
@@ -2660,6 +2714,8 @@ expm1 = Expm1(upgrade_to_float, name='expm1')
class
Sqr
(
UnaryScalarOp
):
nfunc_spec
=
(
'square'
,
1
,
1
)
def
impl
(
self
,
x
):
return
x
*
x
...
...
@@ -2684,6 +2740,8 @@ sqr = Sqr(same_out, name='sqr')
class
Sqrt
(
UnaryScalarOp
):
nfunc_spec
=
(
'sqrt'
,
1
,
1
)
def
impl
(
self
,
x
):
# If x is an int8 or uint8, numpy.sqrt will compute the result in
# half-precision (float16), where we want float32.
...
...
@@ -2715,6 +2773,8 @@ sqrt = Sqrt(upgrade_to_float, name='sqrt')
class
Deg2Rad
(
UnaryScalarOp
):
nfunc_spec
=
(
'deg2rad'
,
1
,
1
)
def
impl
(
self
,
x
):
# If x is an int8 or uint8, numpy.deg2rad will compute the result in
# half-precision (float16), where we want float32.
...
...
@@ -2746,6 +2806,8 @@ deg2rad = Deg2Rad(upgrade_to_float, name='deg2rad')
class
Rad2Deg
(
UnaryScalarOp
):
nfunc_spec
=
(
'rad2deg'
,
1
,
1
)
def
impl
(
self
,
x
):
# If x is an int8 or uint8, numpy.rad2deg will compute the result in
# half-precision (float16), where we want float32.
...
...
@@ -2777,6 +2839,7 @@ rad2deg = Rad2Deg(upgrade_to_float, name='rad2deg')
class
Cos
(
UnaryScalarOp
):
nfunc_spec
=
(
'cos'
,
1
,
1
)
amd_float32
=
"amd_vrsa_cosf"
amd_float64
=
"amd_vrda_cos"
...
...
@@ -2811,6 +2874,8 @@ cos = Cos(upgrade_to_float, name='cos')
class
ArcCos
(
UnaryScalarOp
):
nfunc_spec
=
(
'arccos'
,
1
,
1
)
def
impl
(
self
,
x
):
# If x is an int8 or uint8, numpy.arccos will compute the result in
# half-precision (float16), where we want float32.
...
...
@@ -2842,6 +2907,7 @@ arccos = ArcCos(upgrade_to_float, name='arccos')
class
Sin
(
UnaryScalarOp
):
nfunc_spec
=
(
'sin'
,
1
,
1
)
amd_float32
=
"amd_vrsa_sinf"
amd_float64
=
"amd_vrda_sin"
...
...
@@ -2876,6 +2942,8 @@ sin = Sin(upgrade_to_float, name='sin')
class
ArcSin
(
UnaryScalarOp
):
nfunc_spec
=
(
'arcsin'
,
1
,
1
)
def
impl
(
self
,
x
):
# If x is an int8 or uint8, numpy.arcsin will compute the result in
# half-precision (float16), where we want float32.
...
...
@@ -2907,6 +2975,8 @@ arcsin = ArcSin(upgrade_to_float, name='arcsin')
class
Tan
(
UnaryScalarOp
):
nfunc_spec
=
(
'tan'
,
1
,
1
)
def
impl
(
self
,
x
):
# If x is an int8 or uint8, numpy.tan will compute the result in
# half-precision (float16), where we want float32.
...
...
@@ -2938,6 +3008,8 @@ tan = Tan(upgrade_to_float, name='tan')
class
ArcTan
(
UnaryScalarOp
):
nfunc_spec
=
(
'arctan'
,
1
,
1
)
def
impl
(
self
,
x
):
# If x is an int8 or uint8, numpy.arctan will compute the result in
# half-precision (float16), where we want float32.
...
...
@@ -2969,6 +3041,8 @@ arctan = ArcTan(upgrade_to_float, name='arctan')
class
ArcTan2
(
BinaryScalarOp
):
nfunc_spec
=
(
'arctan2'
,
1
,
1
)
def
impl
(
self
,
y
,
x
):
# If x and y are int8 or uint8, numpy.arctan2 will compute the result
# in half-precision (float16), where we want float32.
...
...
@@ -3016,6 +3090,8 @@ class Cosh(UnaryScalarOp):
cosh(x) = (exp(x) + exp(-x)) / 2.
"""
nfunc_spec
=
(
'cosh'
,
1
,
1
)
def
impl
(
self
,
x
):
# If x is an int8 or uint8, numpy.cosh will compute the result in
# half-precision (float16), where we want float32.
...
...
@@ -3047,6 +3123,8 @@ cosh = Cosh(upgrade_to_float, name='cosh')
class
ArcCosh
(
UnaryScalarOp
):
nfunc_spec
=
(
'arccosh'
,
1
,
1
)
def
impl
(
self
,
x
):
# If x is an int8 or uint8, numpy.arccosh will compute the result in
# half-precision (float16), where we want float32.
...
...
@@ -3082,6 +3160,8 @@ class Sinh(UnaryScalarOp):
sinh(x) = (exp(x) - exp(-x)) / 2.
"""
nfunc_spec
=
(
'sinh'
,
1
,
1
)
def
impl
(
self
,
x
):
# If x is an int8 or uint8, numpy.sinh will compute the result in
# half-precision (float16), where we want float32.
...
...
@@ -3113,6 +3193,8 @@ sinh = Sinh(upgrade_to_float, name='sinh')
class
ArcSinh
(
UnaryScalarOp
):
nfunc_spec
=
(
'arcsinh'
,
1
,
1
)
def
impl
(
self
,
x
):
# If x is an int8 or uint8, numpy.arcsinh will compute the result in
# half-precision (float16), where we want float32.
...
...
@@ -3149,6 +3231,8 @@ class Tanh(UnaryScalarOp):
= (exp(2*x) - 1) / (exp(2*x) + 1).
"""
nfunc_spec
=
(
'tanh'
,
1
,
1
)
def
impl
(
self
,
x
):
# If x is an int8 or uint8, numpy.tanh will compute the result in
# half-precision (float16), where we want float32.
...
...
@@ -3180,6 +3264,8 @@ tanh = Tanh(upgrade_to_float, name='tanh')
class
ArcTanh
(
UnaryScalarOp
):
nfunc_spec
=
(
'arctanh'
,
1
,
1
)
def
impl
(
self
,
x
):
# If x is an int8 or uint8, numpy.arctanh will compute the result in
# half-precision (float16), where we want float32.
...
...
@@ -3215,6 +3301,9 @@ class Real(UnaryScalarOp):
Extract the real coordinate of a complex number.
"""
# numpy.real(float32) return a view on the inputs.
# nfunc_spec = ('real', 1, 1)
def
impl
(
self
,
x
):
return
numpy
.
real
(
x
)
...
...
@@ -3227,6 +3316,8 @@ real = Real(real_out, name='real')
class
Imag
(
UnaryScalarOp
):
nfunc_spec
=
(
'imag'
,
1
,
1
)
def
impl
(
self
,
x
):
return
numpy
.
imag
(
x
)
...
...
@@ -3244,6 +3335,8 @@ imag = Imag(real_out, name='imag')
class
Angle
(
UnaryScalarOp
):
nfunc_spec
=
(
'angle'
,
1
,
1
)
def
impl
(
self
,
x
):
return
numpy
.
angle
(
x
)
...
...
@@ -3303,6 +3396,8 @@ complex = Complex(name='complex')
class
Conj
(
UnaryScalarOp
):
nfunc_spec
=
(
'conj'
,
1
,
1
)
def
impl
(
self
,
x
):
return
numpy
.
conj
(
x
)
conj
=
Conj
(
same_out
,
name
=
'conj'
)
...
...
theano/tensor/basic.py
浏览文件 @
7ef44dfd
...
...
@@ -1738,42 +1738,42 @@ def largest(*args):
# Comparison
##########################
@_scal_elemwise
_with_nfunc
(
'less'
,
2
,
1
)
@_scal_elemwise
def
lt
(
a
,
b
):
"""a < b"""
@_scal_elemwise
_with_nfunc
(
'greater'
,
2
,
1
)
@_scal_elemwise
def
gt
(
a
,
b
):
"""a > b"""
@_scal_elemwise
_with_nfunc
(
'less_equal'
,
2
,
1
)
@_scal_elemwise
def
le
(
a
,
b
):
"""a <= b"""
@_scal_elemwise
_with_nfunc
(
'greater_equal'
,
2
,
1
)
@_scal_elemwise
def
ge
(
a
,
b
):
"""a >= b"""
@_scal_elemwise
_with_nfunc
(
'equal'
,
2
,
1
)
@_scal_elemwise
def
eq
(
a
,
b
):
"""a == b"""
@_scal_elemwise
_with_nfunc
(
'not_equal'
,
2
,
1
)
@_scal_elemwise
def
neq
(
a
,
b
):
"""a != b"""
@_scal_elemwise
_with_nfunc
(
'isnan'
,
1
,
1
)
@_scal_elemwise
def
isnan
(
a
):
"""isnan(a)"""
@_scal_elemwise
_with_nfunc
(
'isinf'
,
1
,
1
)
@_scal_elemwise
def
isinf
(
a
):
"""isinf(a)"""
...
...
@@ -1922,7 +1922,7 @@ def isclose(a, b, rtol=1.e-5, atol=1.e-8, equal_nan=False):
# Condition
##########################
@_scal_elemwise
_with_nfunc
(
'where'
,
3
,
1
)
@_scal_elemwise
def
switch
(
cond
,
ift
,
iff
):
"""if cond then ift else iff"""
...
...
@@ -1932,25 +1932,25 @@ where = switch
##########################
@_scal_elemwise
_with_nfunc
(
'bitwise_and'
,
2
,
1
)
@_scal_elemwise
def
and_
(
a
,
b
):
"""bitwise a & b"""
bitwise_and
=
and_
# numpy name for it
@_scal_elemwise
_with_nfunc
(
'bitwise_or'
,
2
,
1
)
@_scal_elemwise
def
or_
(
a
,
b
):
"""bitwise a | b"""
bitwise_or
=
or_
# numpy name for it
@_scal_elemwise
_with_nfunc
(
'bitwise_xor'
,
2
,
1
)
@_scal_elemwise
def
xor
(
a
,
b
):
"""bitwise a ^ b"""
bitwise_xor
=
xor
# numpy name for it
@_scal_elemwise
_with_nfunc
(
'invert'
,
1
,
1
)
@_scal_elemwise
def
invert
(
a
):
"""bitwise ~a"""
bitwise_not
=
invert
# numpy alias for it
...
...
@@ -1960,7 +1960,7 @@ bitwise_not = invert # numpy alias for it
# Math
##########################
@_scal_elemwise
_with_nfunc
(
'abs'
,
1
,
1
)
@_scal_elemwise
def
abs_
(
a
):
"""|`a`|
...
...
@@ -1972,22 +1972,22 @@ def abs_(a):
pprint
.
assign
(
abs_
,
printing
.
PatternPrinter
((
'|
%(0)
s|'
,
-
1000
)))
@_scal_elemwise
_with_nfunc
(
'exp'
,
1
,
1
)
@_scal_elemwise
def
exp
(
a
):
"""e^`a`"""
@_scal_elemwise
_with_nfunc
(
'exp2'
,
1
,
1
)
@_scal_elemwise
def
exp2
(
a
):
"""2^`a`"""
@_scal_elemwise
_with_nfunc
(
'expm1'
,
1
,
1
)
@_scal_elemwise
def
expm1
(
a
):
"""e^`a` - 1"""
@_scal_elemwise
_with_nfunc
(
'negative'
,
1
,
1
)
@_scal_elemwise
def
neg
(
a
):
"""-a"""
...
...
@@ -1999,42 +1999,42 @@ def inv(a):
"""1.0/a"""
@_scal_elemwise
_with_nfunc
(
'log'
,
1
,
1
)
@_scal_elemwise
def
log
(
a
):
"""base e logarithm of a"""
@_scal_elemwise
_with_nfunc
(
'log2'
,
1
,
1
)
@_scal_elemwise
def
log2
(
a
):
"""base 2 logarithm of a"""
@_scal_elemwise
_with_nfunc
(
'log10'
,
1
,
1
)
@_scal_elemwise
def
log10
(
a
):
"""base 10 logarithm of a"""
@_scal_elemwise
_with_nfunc
(
'log1p'
,
1
,
1
)
@_scal_elemwise
def
log1p
(
a
):
"""log(1+a)"""
@_scal_elemwise
_with_nfunc
(
'sign'
,
1
,
1
)
@_scal_elemwise
def
sgn
(
a
):
"""sign of a"""
@_scal_elemwise
_with_nfunc
(
'ceil'
,
1
,
1
)
@_scal_elemwise
def
ceil
(
a
):
"""ceiling of a"""
@_scal_elemwise
_with_nfunc
(
'floor'
,
1
,
1
)
@_scal_elemwise
def
floor
(
a
):
"""floor of a"""
@_scal_elemwise
_with_nfunc
(
'trunc'
,
1
,
1
)
@_scal_elemwise
def
trunc
(
a
):
"""trunc of a"""
...
...
@@ -2056,7 +2056,7 @@ def round(a, mode="half_away_from_zero"):
raise
Exception
(
"round mode
%
s is not implemented."
%
mode
)
@_scal_elemwise
_with_nfunc
(
'around'
,
1
,
1
)
@_scal_elemwise
def
round_half_to_even
(
a
):
"""round_half_to_even(a)"""
...
...
@@ -2066,7 +2066,7 @@ def round_half_away_from_zero(a):
"""round_half_away_from_zero(a)"""
@_scal_elemwise
_with_nfunc
(
'square'
,
1
,
1
)
@_scal_elemwise
def
sqr
(
a
):
"""square of a"""
...
...
@@ -2075,82 +2075,82 @@ def sqr(a):
square
=
sqr
@_scal_elemwise
_with_nfunc
(
'sqrt'
,
1
,
1
)
@_scal_elemwise
def
sqrt
(
a
):
"""square root of a"""
@_scal_elemwise
_with_nfunc
(
'deg2rad'
,
1
,
1
)
@_scal_elemwise
def
deg2rad
(
a
):
"""convert degree a to radian"""
@_scal_elemwise
_with_nfunc
(
'rad2deg'
,
1
,
1
)
@_scal_elemwise
def
rad2deg
(
a
):
"""convert radian a to degree"""
@_scal_elemwise
_with_nfunc
(
'cos'
,
1
,
1
)
@_scal_elemwise
def
cos
(
a
):
"""cosine of a"""
@_scal_elemwise
_with_nfunc
(
'arccos'
,
1
,
1
)
@_scal_elemwise
def
arccos
(
a
):
"""arccosine of a"""
@_scal_elemwise
_with_nfunc
(
'sin'
,
1
,
1
)
@_scal_elemwise
def
sin
(
a
):
"""sine of a"""
@_scal_elemwise
_with_nfunc
(
'arcsin'
,
1
,
1
)
@_scal_elemwise
def
arcsin
(
a
):
"""arcsine of a"""
@_scal_elemwise
_with_nfunc
(
'tan'
,
1
,
1
)
@_scal_elemwise
def
tan
(
a
):
"""tangent of a"""
@_scal_elemwise
_with_nfunc
(
'arctan'
,
1
,
1
)
@_scal_elemwise
def
arctan
(
a
):
"""arctangent of a"""
@_scal_elemwise
_with_nfunc
(
'arctan2'
,
1
,
1
)
@_scal_elemwise
def
arctan2
(
a
,
b
):
"""arctangent of a / b"""
@_scal_elemwise
_with_nfunc
(
'cosh'
,
1
,
1
)
@_scal_elemwise
def
cosh
(
a
):
"""hyperbolic cosine of a"""
@_scal_elemwise
_with_nfunc
(
'arccosh'
,
1
,
1
)
@_scal_elemwise
def
arccosh
(
a
):
"""hyperbolic arc cosine of a"""
@_scal_elemwise
_with_nfunc
(
'sinh'
,
1
,
1
)
@_scal_elemwise
def
sinh
(
a
):
"""hyperbolic sine of a"""
@_scal_elemwise
_with_nfunc
(
'arcsinh'
,
1
,
1
)
@_scal_elemwise
def
arcsinh
(
a
):
"""hyperbolic arc sine of a"""
@_scal_elemwise
_with_nfunc
(
'tanh'
,
1
,
1
)
@_scal_elemwise
def
tanh
(
a
):
"""hyperbolic tangent of a"""
@_scal_elemwise
_with_nfunc
(
'arctanh'
,
1
,
1
)
@_scal_elemwise
def
arctanh
(
a
):
"""hyperbolic arc tangent of a"""
...
...
@@ -2200,21 +2200,19 @@ def chi2sf(x, k):
"""chi squared survival function"""
# numpy.real(float32) return a view on the inputs.
# @_scal_elemwise_with_nfunc('real', 1, 1)
@_scal_elemwise
def
real
(
z
):
"""Return real component of complex-valued tensor `z`"""
_tensor_py_operators
.
real
=
property
(
real
)
@_scal_elemwise
_with_nfunc
(
'imag'
,
1
,
1
)
@_scal_elemwise
def
imag
(
z
):
"""Return imaginary component of complex-valued tensor `z`"""
_tensor_py_operators
.
imag
=
property
(
imag
)
@_scal_elemwise
_with_nfunc
(
'angle'
,
1
,
1
)
@_scal_elemwise
def
angle
(
z
):
"""Return polar-coordinate angle of complex-valued tensor `z`"""
...
...
@@ -2224,7 +2222,7 @@ def complex(real, imag):
"""Return complex-valued tensor with `real` and `imag` components"""
@_scal_elemwise
_with_nfunc
(
'conj'
,
1
,
1
)
@_scal_elemwise
def
conj
(
z
):
"""Return the complex conjugate of `z`."""
...
...
@@ -3166,13 +3164,13 @@ setdefault = default # legacy
##########################
# Arithmetics
##########################
@_scal_elemwise
_with_nfunc
(
'maximum'
,
2
,
1
)
@_scal_elemwise
def
maximum
(
x
,
y
):
"""elemwise maximum. See max for the maximum in one tensor"""
# see decorator for function body
@_scal_elemwise
_with_nfunc
(
'minimum'
,
2
,
1
)
@_scal_elemwise
def
minimum
(
x
,
y
):
"""elemwise minimum. See min for the minimum in one tensor"""
# see decorator for function body
...
...
@@ -3191,31 +3189,31 @@ def divmod(x, y):
return
floor_div
(
x
,
y
),
mod_check
(
x
,
y
)
@_scal_elemwise
_with_nfunc
(
'add'
,
2
,
1
)
@_scal_elemwise
def
add
(
a
,
*
other_terms
):
"""elementwise addition"""
# see decorator for function body
@_scal_elemwise
_with_nfunc
(
'subtract'
,
2
,
1
)
@_scal_elemwise
def
sub
(
a
,
b
):
"""elementwise subtraction"""
# see decorator for function body
@_scal_elemwise
_with_nfunc
(
'multiply'
,
2
,
1
)
@_scal_elemwise
def
mul
(
a
,
*
other_terms
):
"""elementwise multiplication"""
# see decorator for function body
@_scal_elemwise
_with_nfunc
(
'true_divide'
,
2
,
1
)
@_scal_elemwise
def
true_div
(
a
,
b
):
"""elementwise [true] division (inverse of multiplication)"""
# see decorator for function body
@_scal_elemwise
_with_nfunc
(
'floor_divide'
,
2
,
1
)
@_scal_elemwise
def
int_div
(
a
,
b
):
"""elementwise [floor] division (inverse of multiplication)"""
# see decorator for function body
...
...
@@ -3256,20 +3254,18 @@ def mod_check(x, y):
return
mod
(
x
,
y
)
@_scal_elemwise
_with_nfunc
(
'mod'
,
2
,
1
)
@_scal_elemwise
def
mod
(
a
,
b
):
"""elementwise modulo"""
# see decorator for function body
@_scal_elemwise
_with_nfunc
(
'power'
,
2
,
1
)
@_scal_elemwise
def
pow
(
a
,
b
):
"""elementwise power"""
# see decorator for function body
# The numpy.clip don't work correctly when the min is bigger then the max,
# So we do not use @scal_elemwise_with_nfunc('clip', 3, 1)
@_scal_elemwise
def
clip
(
x
,
min
,
max
):
"""
...
...
theano/tensor/elemwise.py
浏览文件 @
7ef44dfd
...
...
@@ -503,6 +503,8 @@ class Elemwise(OpenMPOp):
self
.
ufunc
=
None
self
.
nfunc
=
None
if
nfunc_spec
is
None
:
nfunc_spec
=
getattr
(
scalar_op
,
'nfunc_spec'
,
None
)
self
.
nfunc_spec
=
nfunc_spec
if
nfunc_spec
:
self
.
nfunc
=
getattr
(
numpy
,
nfunc_spec
[
0
])
...
...
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